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A greedy classification algorithm based on association rule

机译:基于关联规则的贪婪分类算法

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摘要

Classification and association rule discovery are important data mining tasks. Using association rule discovery to construct classification systems, also known as associative classification, is a promising approach. In this paper, a new associative classification technique, Ranked Multilabel Rule (RMR) algorithm is introduced, which generates rules with multiple labels. Rules derived by current associative classification algorithms overlap in their training objects, resulting in many redundant and useless rules. However, the proposed algorithm resolves the overlapping between rules in me classifier by generating rules that does not share training objects during the training phase, resulting in a more accurate classifier. Results obtained from experimenting on 20 binary, multi-class and multi-label data sets show that the proposed technique is able to produce classifiers that contain rules associated with multiple classes. Furthermore, the results reveal that removing overlapping of training objects between the derived rules produces highly competitive classifiers if compared with those extracted by decision trees and other associative classification techniques, with respect to error rate.
机译:分类和关联规则发现是重要的数据挖掘任务。使用关联规则发现来构建分类系统(也称为关联分类)是一种很有前途的方法。本文介绍了一种新的关联分类技术,即排序多标签规则(RMR)算法,该算法生成具有多个标签的规则。当前的关联分类算法派生的规则在它们的训练对象中重叠,从而导致许多冗余且无用的规则。但是,提出的算法通过生成在训练阶段不共享训练对象的规则来解决分类器中规则之间的重叠,从而导致分类器更准确。通过对20个二元,多类和多标签数据集进行实验获得的结果表明,所提出的技术能够产生包含与多个类相关联的规则的分类器。此外,结果表明,与决策树和其他关联分类技术提取的分类器相比,消除错误规则之间的训练对象重叠会产生高度竞争的分类器。

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